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Few-shot Fine-grained Image Classification via Multi-Frequency Neighborhood and Double-cross Modulation

18 July 2022
Hegui Zhu
Zhan Gao
Jiayi Wang
Yangqiaoyu Zhou
Chengqing Li
ArXiv (abs)PDFHTML
Abstract

Traditional fine-grained image classification typically relies on large-scale training samples with annotated ground-truth. However, some sub-categories may have few available samples in real-world applications. In this paper, we propose a novel few-shot fine-grained image classification network (FicNet) using multi-frequency Neighborhood (MFN) and double-cross modulation (DCM). Module MFN is adopted to capture the information in spatial domain and frequency domain. Then, the self-similarity and multi-frequency components are extracted to produce multi-frequency structural representation. DCM employs bi-crisscross component and double 3D cross-attention components to modulate the embedding process by considering global context information and subtle relationship between categories, respectively. The comprehensive experiments on three fine-grained benchmark datasets for two few-shot tasks verify that FicNet has excellent performance compared to the state-of-the-art methods. Especially, the experiments on two datasets, "Caltech-UCSD Birds" and "Stanford Cars", can obtain classification accuracy 93.17\% and 95.36\%, respectively. They are even higher than that the general fine-grained image classification methods can achieve.

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